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International Journal Of Engineering And Computer Science ISSN:2319-7242
Volume 3 Issue 12 December 2014, Page No. 9479-9484
Digital Image Processing based Detection of Brain Abnormality for
Alzheimer’s disease
Dr. PSJ Kumar1 , Mr. Anirban Saha2
1
(Professor and Head, Department of CSE, JIS College of Engineering, Kolkata, India)
2
(PG Scholar, Department of CSE, JIS College of Engineering, Kolkata, India)
ABSTRACT : Digital medical imaging is highly expensive and complex due to the requirement of proprietary software and
expert personnel. This paper introduces a user friendly general and visualization program specially designed i n software called
MATLAB for detection of brain disorder called Alzheimer’s disease as early as possible. This application will provide quantit ative
and clinical analysis of digital medical images i.e. MRI scans of brain. Very tiny and minute structural di fference of brain may
gradually & slowly results in major disorder of brain which may cause Alzheimer’s disease. Here the primary focus is given fo r
detection & diagnosis of Alzheimer’s disease which will be implemented by using bi -cubic interpolation technique.
Keywords - Alzheimer disease, Brain imaging, Color image segmentation, Image registration
I.
INTRODUCTION
Brain is the most complex organ of our human
body and is the center of our nervous system. Any abnormal
behavior and functioning of brain may lead to the total
collapse of entire body functionalities. One such brain
abnormality may result in A lzheimer’s disease. This paper
introduces a simp le user friendly GUI based application for
detection of Alzheimer’s disease by processing images of
brain by taking MRI scanned images of brain as input data
source, and analyzing its morphological abnormalities for
the diagnosis.
II.
REVIEW OF LITERATURE
Most common form of abnormality of brain is the
deformation of cerebral [1, 2] cortex due to shrinking of
brain. The sulci i.e. the spaces in folds of brain are grossly
enlarged resulting to Alzheimer’s disease [3, 4]. In this
paper, the primary and main objective is the identification of
cerebral cortex region of the brain & the measurement of the
cavity area in the fo lds of brain also called sulci by using a
software developed in MATLA B which uses a bi-cubic
interpolation for more accurate result than the result may
obtained by bi-linear interpolation or nearest neighbor
interpolation [5].
III.
ALZHEIMER’S DIS EAS E
Alzheimer's disease is a neurological disorder in
which the death of brain cells causes memory loss and
cognitive decline. A neurodegenerative type of dementia,
the disease starts mild and gets progressively worse. Like all
types of dementia, Alzheimer's is caused by brain cell death.
It is a neurodegenerative disease, which means there is
progressive brain cell death that happens over a course of
time. The total brain size shrinks with Alzheimer's, the
tissue has progressively fewer nerve cells and connections.
The structure of our brain changes as we get older just like
rest of our body structure. Ageing results in slower thinking
& occasional problems of remembering certain things. But
serious memory loss, confusions & other majo r vital
changes in the way our brain works are not related to normal
ageing but may be signs of cell failures of our brain [6].
Brain consists of billions of nerve cells interconnected
among them. In Alzheimer’s disease like any other kinds of
dementia [7], increasing number of brain ce lls gets
deteriorates & thus die out.
The Alzheimer's Association says in its early onset
informat ion that it can sometimes be "a long and frustrating
process" to get this diagnosis confirmed since doctors do not
expect to find Alzheimer's in younger people. So me things
are more co mmonly associated with Alzheimer's disease not seen so often in people without the disorder. These
factors may therefore have some direct connection. Some
are preventable or modifiab le factors (for example, reducing
the risk of diabetes or heart disease may in turn cut the risk
of dementia. If researcher’s gain more understanding of the
risk factors, or scientifically prove any "cause" relationships
for Alzheimer's, this could help to find ways to prevent it or
develop treatments. For the younger age groups, doctors will
look for other dementia causes first. Fig.1 shows the gradual
increase of number of people having Alzheimer’s disease.
While they cannot be seen or tested in the living brain
affected by Alzheimer's disease, postmortem/autopsy will
always show tiny inclusions in the nerve tissue, called
plaques and tangles. Plaques are found between the dying
cells in the brain - fro m the build-up of a protein called betaamy loid and tangles are within the brain neurons - fro m a
disintegration of another protein, called tau.
Dr. PSJ Kumar 1 IJECS Volume 3 Issue 12 December, 2014 Page No.9479-9484
Page 9479
4.4
Electroencephal ography
Electroencephalography (EEG) is the measurement
of the electrical act ivity of the brain by recording fro m
electrodes placed on the scalp. The resulting traces are
known as an electroencephalogram (EEG) and represent an
electrical signal fro m a large number of neurons. EEGs are
frequently used in experimentation because the process is
non-invasive to the research subject. The EEG is capable of
detecting changes in electrical activ ity in the brain on a
millisecond-level. It is one of the few techniques available
that has such high temporal resolution.
4.5
Fig.1 Neurons in the brain. In Alzheimer's, there are microscopic
'Plaques' and 'Tangles' between and within brain cells.
IV.
B RAIN IMAGING TECHN IQUE
It requires special models to transform the signals
that are being recorded or captured at the surface of human
scalp into an image format. Brain imag ing techniques allow
doctors and researchers to view activ ity or problems within
the human brain, without invasive neurosurgery. There are a
number of accepted, safe imaging techniques in use today in
research facilities and hospitals throughout the world.
Magnetic resonance imaging is used in radiology to see or
visualize the organization of internal structures and
functioning of body parts. It is better than computed
tomography scan as it provides much more contrast between
the different soft tissues of our body.
4.1
Magnetic Resonance Imaging
Functional magnetic resonance imaging (M RI) is a
technique for measuring brain activity. It works by detecting
the changes in blood oxygenation and flow that occur in
response to neural activity – when a brain area is more
active it consumes more oxygen and to meet this increased
demand blood flow increases to the active area. MRI can be
used to produce activation maps showing which parts of the
brain are involved in a part icular mental p rocess.
4.2
Computed Tomography
Co mputed tomography (CT) scanning builds up a
picture of the brain based on the differential absorption of
X-rays. During a CT scan the subject lies on a table that
slides in and out of a hollow, cylindrical apparatus. An x-ray
source rides on a ring around the inside of the tube, with its
beam aimed at the subjects head. After passing through the
head, the beam is sampled by one of the many detectors that
line the machine’s circu mference. Images made using x-rays
depend on the absorption of the beam by the tissue it passes
through. Bone and hard tissue absorb x-rays well, air and
water absorb very little and soft tissue is somewhere in
between. Thus, CT scans reveal the gross features of the
brain but do not resolve its structure well.
4.3
Positron Emission Tomography
Positron Emission Tomography (PET) uses trace
amounts of short-lived radioactive material to map
functional processes in the brain. When the material
undergoes radioactive decay a positron is emitted, wh ich can
be picked up by the detector. Areas of high radioactivity are
associated with brain activ ity.
Magnetoencephalography
Magneto encephalography (MEG) is an imag ing
technique used to measure the magnetic fields produced by
electrical act ivity in the brain via extremely sensitive
devices known as SQUIDs. These measurements are
commonly used in both research and clinical settings. There
are many uses for the MEG, includ ing assisting surgeons in
localizing pathology, assisting researchers in determin ing
the function of various parts of the brain, neurofeedback,
and others.
4.6
Near Infrared S pectroscopy
Near infrared spectroscopy (NIRS) is an optical
technique for measuring blood oxygenation in the brain. It
works by shining light in the near infrared part of the
spectrum (700-900n m) through the skull and detecting how
much the remerg ing light is attenuated. How much the light
is attenuated depends on blood oxygenation and thus NIRS
can provide an indirect measure of brain activ ity.
V.
IMAGE R EGIS TRATION
Medical images are increasingly being used within
healthcare for diagnosis, planning treatment, guiding
treatment and monitoring dis ease progression. Within
med ical research they are used to investigate disease
processes and understand normal development and ageing.
A critical stage in this process is the alignment or
registration of the images. The most widely used application
of med ical image registration is aligning tomographic
images. That is aligning images that sample threedimensional space with reasonably isotropic resolution.
Furthermore, it is often assumed that between image
acquisitions, the anatomical and pathological structures of
interest do not deform or distort. This ‘rig id body’
assumption simplifies the registration process, but
techniques that make this assumption have quite limited
applicability. Many organs do deform substantially, for
example with the cardiac or respiratory cycles or as a result
of change in position. The brain within the skull is
reasonably non-deformable provided the skull remains
closed between imaging and that there is no substantial
change in anatomy and pathology, such as growth in a
lesion, between scans. In this paper, data has been acquired
by sampling the same object at different time span and/or
fro m different perspectives and may lie in different
coordinate systems. Image registration is the process of
transforming or changing the different datasets from
different co-ordinate system to a single coordinate system
[8]. It is necessary so that we can compare & integrate data
that are obtained from d ifferent measurement.
Dr. PSJ Kumar 1 IJECS Volume 3 Issue 12 December, 2014 Page No.9479-9484
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5.1
Need for Image Registration
Imaging equipment is imperfect, so regardless of
the organ being imaged, the rigid body assumption can be
violated as a result of scanner-induced geometrical
distortions that differ between images. Although the
majority of the registration approaches reviewed here have
been applied to the rigid body registration of head images
acquired using tomographic modalities, there is now
considerable research activity aimed at tackling the more
challenging problems of aligning images that have different
dimensionality, aligning images of organs that deform,
aligning images fro m different subjects, or of aligning
images in ways that can correct for scanner induced
geometric distortion. This is quite a rapidly moving research
field, so the work rev iewed in these areas is more
preliminary. For all types of image registration, the
assessment of registration accuracy is very impo rtant. The
required accuracy will vary between applications, but for all
applications it is desirable to know both the expected
accuracy of a technique and also the registration accuracy
achieved on each individual set of images. For one type of
registration algorith m, point-landmark registration, the error
propagation is well understood. For other approaches,
however, the algorith ms themselves provide no useful
indication of accuracy. The most promising approach to
ensuring acceptable accuracy is visual assessment of the
registered images before they are used for the desired
clin ical or research applicat ion.
5.2
Image Registration Methodology
There are many image registration methods, and
they may be classified into fo llo wing eight categories:
image dimensionality, registration basis, geometrical
transformation, degree of interaction, optimizat ion
procedure, modalit ies, subject, and object. “Image
dimensionality” refers to the number of geo metrica l
dimensions of the image spaces involved, which in medical
applications are typically three-dimensional but sometimes
two-dimensional. The “reg istration basis” is the aspect of
the two views used to effect the registration. For examp le,
the registration might be based on a given set of point pairs
that are known to correspond or the basis might be a set of
corresponding surface pairs. Other loci might be used as
well, including lines or planes. In some cases, these
correspondences are derived from objects that have been
attached to the anatomy exp ressly to facilitate reg istration.
Such objects include, for example, the stereotactic frame
and point-like markers, each of wh ich has components
designed to be clearly visible in specific imaging modalit ies.
Registration methods that are based on such attachments are
termed “prospective” or “extrinsic” methods and are in
contrast with the so-called “retrospective” or “intrinsic”
methods, which rely on anatomic features only.
Alternatively, there may be no known correspondences as
input. The category, “geometrical transformation” is a
combination of two of Maintz’s categories, the “nature of
transformation” and the “domain of transformat ion”. It
refers to the mathemat ical form of the geometrical mapping
used to align points in one space with those in the other.
“Degree of interaction” refers to the control exerted by a
human operator over the registration algorith m. The
interaction may consist simp ly of the initialization of certain
parameters, or it may involve adjustments throughout the
registration process in response to visual assessment of the
align ment or to other measures of intermed iate registration
success. The ideal situation is the fully automatic algorith m,
which requires no interaction. “Optimization procedure”
refers to the standard approach in algorith mic reg istration in
which the quality of the registration is estimated continually
during the registration procedure in terms of some function
of the images and the mapping between them. The
optimization procedure is the method, possibly including
some degree of interaction, by which that function is
maximized or min imized. The ideal situation here is a
closed form solution which is guaranteed to produce the
global extremu m. The more co mmon situation is that in
which a global extremu m is sought among many local ones
by means of iterat ive search.
“Modalities” refers to the means by which the
images to be registered are acquired. Reg istration methods
designed for like modalit ies are typically distinct from thos e
appropriate for differing modalit ies. Registration between
like modalities, such as MR-MR, is called “intramodal” or
“mono modal” reg istration; registration between differing
modalities, such as MR-PET, is called “intermodal” or
“mu ltimodal” registration. “Subject” refers to patient
involvement and comprises three subcategories: intrapatient,
interpatient, and atlas, the latter category comprising
registrations between patients and atlases, which are they
typically derived fro m patient images. “Object” refers to the
particular region of anatomy to be reg istered (e.g., head,
liver, vertebra).
VI.
COLOR IMAGE S EGMENTATION
Image segmentation is the process of separating or
grouping an image into different parts. These parts normally
correspond to something that humans can easily separate
and view as indiv idual objects. Co mputers have no means of
intelligently recognizing objects, and so many different
methods have been developed in order to segment images.
The segmentation process in based on various features
found in the image. This might be color information that is
used to create histograms, or informat ion about the pixels
that indicate edges or boundaries or texture in formation.
The color image segmentation is also widely used in many
mu ltimed ia applications, for examp le; in order to effectively
scan large numbers of images and video data in digital
lib raries, they all need to be compiled directory, sorting and
storage, the color and texture are two most important
features of information retrieval based on its content in the
images and video. Therefore, the color and texture
segmentation often used for indexing and management of
data; another example of multimedia applications is the
dissemination of information in the network. Today, a
large number of mu lt imedia data streams sent on the
Internet, However, due to the bandwidth limitations; we
need to compress the data, and therefore it calls for image
and video segmentation.
6.1
Region B ased Techni ques
Region based methods are based on continuity.
These techniques divide the entire image into sub
regions depending on some rules like all the pixels in
Dr. PSJ Kumar 1 IJECS Volume 3 Issue 12 December, 2014 Page No.9479-9484
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one region must have the same gray level. Region-based
techniques rely on common patterns in intensity values
within a cluster of neighboring pixels. The cluster is referred
to as the region, and the goal of the segmentation
algorith m is to group the regions according to their
anatomical or functional ro les.
6.2
Clustering Techni que
Given an image this methods splits them into K
groups or clusters. The mean of each cluster is taken and
then each point p is added to the cluster where the difference
between the point and the mean is smallest. Since clustering
works on hue estimates it is usually used in dividing a scene
into different objects. The performance of clustering
algorith m for image segmentation is highly sensitive to
features used and types of objects in the image and hence
generalization of this technique is difficult. Ali,
Karmarkar and Dooley presented a new shape-based
image segmentation algorithm called fuzzy clustering for
image segmentation using generic shape informat ion
which integrates generic shape information into the
Gustafson-Kessel clustering framework. Hence using the
algorith m presented in can be used for many different
object shapes and hence one framework can be used for
different applications like med ical imaging, security
systems and any image process ing application where
arbitrary shaped object segmentation is required. But
some clustering algorith ms like K-means clustering doesn’t
guarantee continuous areas in the image, even if it does
edges of these areas tend to be uneven, this is the major
drawback which is overcome by split and merge
technique.
Split and Merge Techni que
There are two parts to this technique first the image
is split depending on some criterion and then it is merged.
The whole image is init ially taken as a single region then
some measure of internal similarity is co mputed using
standard deviation. If too much variety occurs then the
image is split into regions using thresholding. This is
repeated until no more splits are further possible. Quadtree
is a common data structure used for splitting. Then comes
the merging phase, where two regions are merged if they are
adjacent and similar. Merging is repeated until no more
further merging is possible. The major advantage of this
technique is guaranteed connected regions. Quad trees are
widely used in Geographic informat ion system. Kelkar D.
and Gupta, S[3] have introduced an improved Quad tree
method (IQM ) for split and merge. In this improved method
they have used three steps first splitting the image, second
initializing neighbors list and the third step is merging
splitted regions. They have divided the third step into
two phases, in-house and final merge and have shown that
this decomposition reduces problems involved in
handling lengthy neighbor list during merging phase. The
drawbacks of the split and merge technique are, the results
depend on the position and orientation of the image,
leads to blocky final segmentation and regular div ision
leads to over segmentation by splitting. This drawback can
be overcome by reducing number o f reg ions by using
Normalized cuts method.
VII.
SYS TEM DES IGN
The problems in analysis of images include [10],
transport of data, identification of boundary, volume
estimation, 3D reconstruction, shape analysis, image
overlay, etc wh ich requires that investigators must have
access to suitable methods of bio medical image analysis .
Different cost function, minimizat ion method, different
sampling, editing & s moothing strategies are compared [11].
Internal consistency measurements were used to place limits
on registration accuracy for MRI scan. All strategies were
consistent to sub-voxel accuracy for intra subjects, intramodality registration [12]. Estimated accuracy of
registration of structured MRI scan images was in 75.5 u m
to 149.5 u m range. The registration algorith m described here
are very flexib le & robust. The main emphasis is given to
the color co mbination of so me brain tissues [13]. The spaces
in the sulci can be easily detected by their color
combination. Based on the color intensity of that area and
measured results, the hypothesis will be generated. Fig.2
shows cerebral cortex region with colo r strain.
6.3
Fig.2 Cerebral cortex with color stain
7.1
Formul ation of Model
1. Read & zoo m the image using Bi-cubic
interpolation [14].
2. Manage all exceptions while loading the zoomed
image.
3. Get the pixmap.
4. Extract cavity area of sulci.
5. Find the sum of all p ixel values of 3 arrays (red,
green, blue) fro m crapped area.
6. If values == 0 identify as black.
7. Put total identified pixel (that are b lack) into an
array called as cavity_array.
8. Else put (non-black) pixels into an array called
corex_arr.
9. Co mpare the length of cavity & cortex array by
using length function.
10. If (length of cavity array is more), then trace as
abnormality.
11. Else it’s normal in nature.
12. Set the graph of both cavity & cortex array
using plot function.
Dr. PSJ Kumar 1 IJECS Volume 3 Issue 12 December, 2014 Page No.9479-9484
Page 9482
perfection. The highlight of this software tool is its
simp licity coupled with user friendliness & keen observation
of medical image at minute levels.
7.3 Future Enhancement
In this paper, measurement is based on color coding system.
Measurement should be converted to some metric form so
that the brain abnormality of Alzheimer’s disease can be
categorized as mild, moderate or severe.
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Fig.4 Measurement of abnormality
7.2 Conclusion
Due to heavy cost much of the medical imag ing
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the brain tissues. The task has almost being fulfilled &
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Dr. PSJ Kumar 1 IJECS Volume 3 Issue 12 December, 2014 Page No.9479-9484
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